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How to extract mean frequency from continuous wavelet transform (CWT)

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Hello,
I have used the cwt function in Matlab 2017a to create a scalogram of an electromyography (EMG) signal. My goal is to compare the time varying mean frequencies of different EMG signals. The issue is that I'm not sure how to use the complex double output (wt) to calculate a usable mean frequency 1D waveform.

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Santhana Raj
Santhana Raj am 22 Mär. 2017
Hi,
If your question is to how to get useful information from the complex matrix of 'wt', then use the command 'abs' to get the absolute magnitude of the complex variable.
If your question is to how to extract mean data from a vector, then compute the average of the signal. You can do the same for different scales in your wt or overall average value across all scales.
Hope this helps.
Raj
  4 Kommentare
Brent
Brent am 27 Nov. 2017
Hi Jungyeon. Below is the code I used to calculate IMNF. It's based on the paper above and uses the [wt, f, coi] outputs from the cwt function. you'll likely need to filter the IMNF as the outcome is quite noisy.
wta=abs(wt);
s_max=length(f);
s=1:s_max;
w0 = f(1);
for i=1:size(wta,2)
w=w0./(s(2:end));
IMNFi(i)=trapz(w',w'.*wta(2:end,i))./trapz(w',wta(2:end,i));
end
Christoph Mohl
Christoph Mohl am 27 Nov. 2023
Hi Brent,
even though it´s been a while since you posted the code above, I hope you can still help me with one question.
Why do you divide w0 by the second to the last scale?
Kind regards,
Christoph
w=w0./(s(2:end));

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